由神经网络编码的数据驱动先验贝叶斯成像:理论、方法和算法

M. Holden, M. Pereyra, K. Zygalakis
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引用次数: 16

摘要

本文提出了一种新的方法来执行贝叶斯推理的成像反问题,其中先验知识是可用的训练数据的形式。遵循流形假设并采用生成建模方法,我们构建了一个数据驱动的先验,该先验支持在环境空间的子流形上,我们可以通过使用变分自编码器或生成对抗网络从训练数据中学习。我们在容易验证的条件下建立了相关后验分布和后验矩的存在性和适定性,为贝叶斯估计和不确定性量化分析提供了严格的基础。贝叶斯计算通过在流形上使用预条件的Crank-Nicolson算法的并行调质版本来执行,该算法被证明是遍历的,并且对这些数据驱动模型的非凸性质具有鲁棒性。除了点估计和不确定性量化分析之外,我们还推导了一个模型错误规范测试来自动检测数据驱动的先验不可靠的情况,并解释了如何直接从训练数据中识别潜在空间的维度。通过对MNIST数据集的一系列实验说明了所提出的方法,在这些实验中,它优于来自最先进的替代图像重建方法。模型精度分析表明,数据驱动模型报告的贝叶斯概率在概率的频率定义下也非常准确。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Bayesian Imaging With Data-Driven Priors Encoded by Neural Networks: Theory, Methods, and Algorithms
This paper proposes a new methodology for performing Bayesian inference in imaging inverse problems where the prior knowledge is available in the form of training data. Following the manifold hypothesis and adopting a generative modelling approach, we construct a data-driven prior that is supported on a sub-manifold of the ambient space, which we can learn from the training data by using a variational autoencoder or a generative adversarial network. We establish the existence and well-posedness of the associated posterior distribution and posterior moments under easily verifiable conditions, providing a rigorous underpinning for Bayesian estimators and uncertainty quantification analyses. Bayesian computation is performed by using a parallel tempered version of the preconditioned Crank-Nicolson algorithm on the manifold, which is shown to be ergodic and robust to the non-convex nature of these data-driven models. In addition to point estimators and uncertainty quantification analyses, we derive a model misspecification test to automatically detect situations where the data-driven prior is unreliable, and explain how to identify the dimension of the latent space directly from the training data. The proposed approach is illustrated with a range of experiments with the MNIST dataset, where it outperforms alternative image reconstruction approaches from the state of the art. A model accuracy analysis suggests that the Bayesian probabilities reported by the data-driven models are also remarkably accurate under a frequentist definition of probability.
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